Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.

Current tools used in the reconstruction of ancestral gene orders often fall into event-based and adjacency-based methods according to the principles they follow. Event-based methods such as GRAPPA are very accurate but with extremely high complexity, while more recent methods based on gene adjacenc...

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Main Authors: Ning Yang, Fei Hu, Lingxi Zhou, Jijun Tang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4193752?pdf=render
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spelling doaj-ab196189b29c4cfe9bcbe34f369110222020-11-25T02:11:57ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-01910e10879610.1371/journal.pone.0108796Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.Ning YangFei HuLingxi ZhouJijun TangCurrent tools used in the reconstruction of ancestral gene orders often fall into event-based and adjacency-based methods according to the principles they follow. Event-based methods such as GRAPPA are very accurate but with extremely high complexity, while more recent methods based on gene adjacencies such as InferCARsPro is relatively faster, but often produces an excessive number of chromosomes. This issue is mitigated by newer methods such as GapAdj, however it sacrifices a considerable portion of accuracy. We recently developed an adjacency-based method in the probabilistic framework called PMAG to infer ancestral gene orders. PMAG relies on calculating the conditional probabilities of gene adjacencies that are found in the leaf genomes using the Bayes' theorem. It uses a novel transition model which accounts for adjacency changes along the tree branches as well as a re-rooting procedure to prevent any information loss. In this paper, we improved PMAG with a new method to assemble gene adjacencies into valid gene orders, using an exact solver for traveling salesman problem (TSP) to maximize the overall conditional probabilities. We conducted a series of simulation experiments using a wide range of configurations. The first set of experiments was to verify the effectiveness of our strategy of using the better transition model and re-rooting the tree under the targeted ancestral genome. PMAG was then thoroughly compared in terms of three measurements with its four major competitors including InferCARsPro, GapAdj, GASTS and SCJ in order to assess their performances. According to the results, PMAG demonstrates superior performance in terms of adjacency, distance and assembly accuracies, and yet achieves comparable running time, even all TSP instances were solved exactly. PMAG is available for free at http://phylo.cse.sc.edu.http://europepmc.org/articles/PMC4193752?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Ning Yang
Fei Hu
Lingxi Zhou
Jijun Tang
spellingShingle Ning Yang
Fei Hu
Lingxi Zhou
Jijun Tang
Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.
PLoS ONE
author_facet Ning Yang
Fei Hu
Lingxi Zhou
Jijun Tang
author_sort Ning Yang
title Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.
title_short Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.
title_full Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.
title_fullStr Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.
title_full_unstemmed Reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.
title_sort reconstruction of ancestral gene orders using probabilistic and gene encoding approaches.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Current tools used in the reconstruction of ancestral gene orders often fall into event-based and adjacency-based methods according to the principles they follow. Event-based methods such as GRAPPA are very accurate but with extremely high complexity, while more recent methods based on gene adjacencies such as InferCARsPro is relatively faster, but often produces an excessive number of chromosomes. This issue is mitigated by newer methods such as GapAdj, however it sacrifices a considerable portion of accuracy. We recently developed an adjacency-based method in the probabilistic framework called PMAG to infer ancestral gene orders. PMAG relies on calculating the conditional probabilities of gene adjacencies that are found in the leaf genomes using the Bayes' theorem. It uses a novel transition model which accounts for adjacency changes along the tree branches as well as a re-rooting procedure to prevent any information loss. In this paper, we improved PMAG with a new method to assemble gene adjacencies into valid gene orders, using an exact solver for traveling salesman problem (TSP) to maximize the overall conditional probabilities. We conducted a series of simulation experiments using a wide range of configurations. The first set of experiments was to verify the effectiveness of our strategy of using the better transition model and re-rooting the tree under the targeted ancestral genome. PMAG was then thoroughly compared in terms of three measurements with its four major competitors including InferCARsPro, GapAdj, GASTS and SCJ in order to assess their performances. According to the results, PMAG demonstrates superior performance in terms of adjacency, distance and assembly accuracies, and yet achieves comparable running time, even all TSP instances were solved exactly. PMAG is available for free at http://phylo.cse.sc.edu.
url http://europepmc.org/articles/PMC4193752?pdf=render
work_keys_str_mv AT ningyang reconstructionofancestralgeneordersusingprobabilisticandgeneencodingapproaches
AT feihu reconstructionofancestralgeneordersusingprobabilisticandgeneencodingapproaches
AT lingxizhou reconstructionofancestralgeneordersusingprobabilisticandgeneencodingapproaches
AT jijuntang reconstructionofancestralgeneordersusingprobabilisticandgeneencodingapproaches
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